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Statistics & Flood Frequency Chapter 3

Statistics & Flood Frequency Chapter 3. CIVE 6361. Predicting FLOODS. Flood Frequency Analysis. Statistical Methods to evaluate probability exceeding a particular outcome - P (X >20,000 cfs) = 10% Used to determine return periods of rainfall or flows

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Statistics & Flood Frequency Chapter 3

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  1. Statistics & Flood FrequencyChapter 3 CIVE 6361

  2. Predicting FLOODS

  3. Flood Frequency Analysis • Statistical Methods to evaluate probability exceeding a particular outcome - P (X >20,000 cfs) = 10% • Used to determine return periods of rainfall or flows • Used to determine specific frequency flows for floodplain mapping purposes (10, 25, 50, 100 yr) • Used for datasets that have no obvious trends • Used to statistically extend data sets

  4. Random Variables • Parameter that cannot be predicted with certainty • Outcome of a random or uncertain process - flipping a coin or picking out a card from deck • Can be discrete or continuous • Data are usually discrete or quantized • Usually easier to apply continuous distribution to discrete data that has been organized into bins

  5. Typical CDF Continuous F(x1) - F(x2) Discrete F(x1) = P(x < x1)

  6. Frequency Histogram 36 27 17.3 1.3 9 1.3 8 Probability that Q is 10,000 to 15, 000 = 17.3% Prob that Q < 20,000 = 1.3 + 17.3 + 36 = 54.6%

  7. Probability Distributions CDF is the most useful form for analysis

  8. Moments of a Distribution First Moment about the Origin Discrete Continuous

  9. Var(x)= Variance Second moment about mean

  10. Estimates of Moments from Data Std Dev.Sx = (Sx2)1/2

  11. Skewness CoefficientUsed to evaluate high or low data points - flood or drought data

  12. Mean, Median, Mode • Positive Skew moves mean to right • Negative Skew moves mean to left • Normal Dist’n has mean = median = mode • Median has highest prob. of occurrence

  13. Skewed PDF - Long Right Tail

  14. 01 76 83 '98

  15. Skewed Data

  16. Climate Change Data

  17. Siletz River Data Stationary Data Showing No Obvious Trends

  18. Data with Trends

  19. Frequency Histogram 36 27 17.3 1.3 9 1.3 8 Probability that Q is 10,000 to 15, 000 = 17.3% Prob that Q < 20,000 = 1.3 + 17.3 + 36 = 54.6%

  20. Cumulative Histogram Probability that Q < 20,000 is 54.6 % Probability that Q > 25,000 is 19 %

  21. PDF - Gamma Dist

  22. Major Distributions • Binomial - P (x successes in n trials) • Exponential - decays rapidly to low probability - event arrival times • Normal- Symmetric based on m and s • Lognormal - Log data are normally dist’d • Gamma - skewed distribution - hydro data • Log Pearson III -skewed logs -recommended by the IAC on water data - most often used

  23. Binomial Distribution The probability of getting x successes followed by n-x failures is the product of prob of n independent events: px (1-p)n-x This represents only one possible outcome. The number of ways of choosing x successes out of n events is the binomial coeff. The resulting distribution is the Binomial or B(n,p). Bin. Coeff for single success in 3 years = 3(2)(1) / 2(1) = 3

  24. Binomial Dist’n B(n,p)

  25. Risk and Reliability • The probability of at least one success in n years, where the probability of success in any year is 1/T, • is called the RISK. • Prob success = p = 1/T and Prob failure = 1-p • RISK = 1 - P(0) • = 1 - Prob(no success in n years) • = 1 - (1-p)n • = 1 - (1 - 1/T)n • Reliability = (1 - 1/T)n

  26. Design Periods vs RISK and Design Life Expected Design Life (Years) x 2 x 3

  27. Risk Example What is the probabilityof at least one 50 yr flood in a 30 year mortgage period, where the probability of success in any year is 1/T = 1.50 = 0.02 RISK = 1 - (1 - 1/T)n = 1 - (1 - 0.02)30 = 1 - (0.98)30 = 0.455 or 46% If this is too large a risk, then increase design level to the 100 year where p = 0.01 RISK = 1 - (0.99)30 = 0.26 or 26%

  28. Exponential Dist’n Poisson Process where k is average no. of events per time and 1/k is the average time between arrivals f(t) = k e - kt for t > 0 Traffic flow Flood arrivals Telephone calls

  29. Exponential Dist’n f(t) = k e - kt for t > 0 F(t) = 1 - e - kt Avg Time Between Events

  30. Gamma Dist’n Unit Hydrographs n =1 n =2 n =3

  31. Parameters of Dist’n

  32. Normal, LogN, LPIII Data in bins Normal

  33. Normal Prob Paper Normal Prob Paper converts the Normal CDF S curve into a straight line on a prob scale

  34. Normal Prob Paper Std Dev = +1000 cfs Mean = 5200 cfs • Place mean at F = 50% • Place one Sx at 15.9 and 84.1% • Connect points with st. line • Plot data with plotting position    formula P = m/n+1 Std Dev = –1000 cfs

  35. Normal Dist’n Fit Mean

  36. Frequency Analysis of Peak Flow Data

  37. Frequency Analysis of Peak Flow Data • Take Mean and Variance (S.D.) of ranked data • Take Skewness Cs of data (3rd moment about mean) • If Cs near zero, assume normal dist’n • If Cs large, convert Y = Log x - (Mean and Var of Y) • Take Skewness of Log data - Cs(Y) • If Cs near zero, then fits Lognormal • If Cs not zero, fit data to Log Pearson III

  38. Siletz River Example 75 data points - Excel Tools Original Q Y = Log Q

  39. Siletz River Example - Fit Normal and LogN • Normal DistributionQ = Qm + z SQ • Q100 = 20452 + 2.326(6089) = 34,620 cfs • Mean + z (S.D.) • Where z = std normal variate - tables Log N Distribution Y = Ym + k SY Y100 = 4.29209 + 2.326(0.129) = 4.5923 k = freq factor and Q = 10Y = 39,100 cfs

  40. Log Pearson Type III Log Pearson Type IIIY = Ym + k SY K is a function of Cs and Recurrence Interval Table 3.4 lists values for pos and neg skews For Cs = -0.15, thus K = 2.15 from Table 3.4 Y100 = 4.29209 + 2.15(0.129) = 4.567 Q = 10Y = 36,927 cfs for LP III Plot several points on Log Prob paper

  41. LogN Prob Paper for CDF • What is the prob that flow exceeds     some given value - 100 yr value • Plot data with plotting position    formula P = m/n+1 , m = rank, n = # • Log N dist’n plots as straight line

  42. LogN Plot of Siletz R. Mean Straight Line Fits Data Well

  43. Siletz River Flow Data Various Fits of CDFs LP3 has curvature LN is straight line

  44. Flow Duration Curves

  45. Trends in data have to be removed before any Frequency Analysis 01 92 '98 98

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